发现社交媒体中的重叠群体

Xufei Wang, Lei Tang, Huiji Gao, Huan Liu
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引用次数: 162

摘要

社交媒体的日益普及缩短了人与人之间的距离。社交活动,如Flickr上的标签,Delicious上的书签,Twitter上的Twitter等,正在重塑人们的社交生活,重新定义人们的社会角色。有共同兴趣的人倾向于在社交媒体上组成自己的群体,同一社区内的用户可能会表现出相似的社会行为(例如,看同样的电影,有相似的政治观点),这反过来又强化了社区结构。社会活动中的多重互动导致社区结构往往是重叠的,即一个人同时参与多个社区。我们提出了一种新的共聚类框架,利用社交媒体中用户和标签之间的网络信息来发现这些重叠的社区。在我们的方法中,用户通过标签连接,标签连接到用户。通过查看谁对什么感兴趣,这种用户和标签的显式表示对于理解群体进化很有用。我们的方法的有效性得到了合成和在线社交网络数据的实证评估的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering Overlapping Groups in Social Media
The increasing popularity of social media is shortening the distance between people. Social activities, e.g., tagging in Flickr, book marking in Delicious, twittering in Twitter, etc. are reshaping people’s social life and redefining their social roles. People with shared interests tend to form their groups in social media, and users within the same community likely exhibit similar social behavior (e.g., going for the same movies, having similar political viewpoints), which in turn reinforces the community structure. The multiple interactions in social activities entail that the community structures are often overlapping, i.e., one person is involved in several communities. We propose a novel co-clustering framework, which takes advantage of networking information between users and tags in social media, to discover these overlapping communities. In our method, users are connected via tags and tags are connected to users. This explicit representation of users and tags is useful for understanding group evolution by looking at who is interested in what. The efficacy of our method is supported by empirical evaluation in both synthetic and online social networking data.
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